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I constructed an numpy array::

a=np.ndarray([2,3]) 

then i want to see where its data are::

a.data 
>>>Out[213]: <read-write buffer for 0x0482C1D0, size 48, offset 0 at 0x049E87A0> 
a.data 
>>>Out[214]: <read-write buffer for 0x0482C1D0, size 48, offset 0 at 0x049E82A0> 
a.data 
>>>Out[215]: <read-write buffer for 0x0482C1D0, size 48, offset 0 at 0x049E81C0> 

...

why every time the offset address is different? if i want to transfer the data to a c function using c_types by::

ctypes_array = (ctypes.c_char * a.size * 8).from_address(ptr) 

how should i get the value of ptr?

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related stackoverflow.com/a/3671889 –  J.F. Sebastian Jun 29 '12 at 15:57

2 Answers 2

up vote 3 down vote accepted

Also, have a look at ndarray.__array_interface__, which is a dict that contains all of the information you're after.

In your case,

pointer, read_only_flag = a.__array_interface__['data']
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thanks, this is what i want :) –  shelper Jun 29 '12 at 17:29
    
Glad it helped! It may not be the best or most effective way to do it, though. As J.F.Sebastian mentioned, have a look at numpy.ctypeslib (Though if I recall correctly, it uses the __array_interface__, as well.). –  Joe Kington Jun 29 '12 at 18:22
1  
@Joe The result of a.__array_interface__['data'] is not equal to the address in the echo of a.data, like following >>>a=array([(1,2)]) >>> a.data <read-write buffer for 0x8b174c0, size 8, offset 0 at 0x8af6120> >>> print hex(a.__array_interface__['data'][0]) 0x893ff38 –  Samuel Aug 28 '13 at 14:26
    
@Samuel - That's because a.data is a buffer object, rather than the the actual memory buffer itself. Notice that a new, different buffer object is created each time you call a.data (as J.F. Sebastian notes in his answer). Have a look at: docs.python.org/2/library/functions.html#buffer –  Joe Kington Aug 28 '13 at 14:38

a.data might be a property whose getter function creates a new buffer object (meta data) on each call.

To get the address see how numpy.ctypeslib.as_ctypes() is implemented.

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